In & out zooming on time-aware user/tag clusters

被引:0
|
作者
Eirini Giannakidou
Vassiliki Koutsonikola
Athena Vakali
Ioannis Kompatsiaris
机构
[1] Aristotle University,Department of Informatics
[2] Informatics and Telematics Institute,undefined
[3] CERTH,undefined
关键词
Time-aware clustering; Social tagging systems; Users’ interests over time; Events;
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学科分类号
摘要
The common ground behind most approaches that analyze social tagging systems is addressing the information challenge that emerges from the massive activity of millions of users who interact and share resources and/or metadata online. However, lack of any time-related data in the analysis process implicitly denies much of the dynamic nature of social tagging activity. In this paper we claim that holding a temporal dimension, allows for tracking macroscopic and microscopic users’ interests, detecting emerging trends and recognizing events. To this end, we propose a time-aware co-clustering approach for acquiring semantic and temporal patterns out of the tagging activity. The resulted clusters contain both users and tags of similar patterns over time, and reveal non-obvious or “hidden” relations among users and topics of their common interest. Zoom in & out views serve as visualization methods on different aspects of the clusters’ structure, in order to evaluate the efficiency of the approach.
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页码:685 / 708
页数:23
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